This paper studies the impact of the initial data gathering method on the subsequent learning of a dynamics model. Dynamics models approximate the true transition function of a given task, in order to perform policy search directly on the model rather than on the costly real system. This study aims to determine how to bootstrap a model as efficiently as possible, by comparing initialization methods employed in two different policy search frameworks in the literature. The study focuses on the model performance under the episode-based framework of Evolutionary methods using probabilistic ensembles. Experimental results show that various task-dependant factors can be detrimental to each method, suggesting to explore hybrid approaches.
@article{arxiv.2210.11801,
title = {Random Actions vs Random Policies: Bootstrapping Model-Based Direct Policy Search},
author = {Elias Hanna and Alex Coninx and Stéphane Doncieux},
journal= {arXiv preprint arXiv:2210.11801},
year = {2022}
}
Comments
ICML 2022 Workshop Adaptive Experimental Design and Active Learning in the Real World